Differentiation between Brain Metastasis and Glioblastoma using MRI and two-dimensional Turbo Spectroscopic Imaging data

نویسندگان

  • J. Luts
  • T. Laudadio
  • M. Martínez-Bisbal
  • B. Celda
  • S. Van Huffel
چکیده

in the 2D-TSI slice for a patient with a glioblastoma tumor; bottom: the corresponding nosologic images. Colors: dark blue = gray matter; light blue = white matter; green = CSF; yellow = tumor; brown = necrosis+tumor (mixed tissue); gray-blue = normal+axonal damage; white = normal tissue on MRI, but tumor or necrosis on MRSI. Figure 2. Top: T2-weigthed MR images of three neighbor slices included in the 2D-TSI slice for a patient with a metastasis tumor; bottom: the corresponding nosologic images. Colors have the same meanings as in Figure 1. In contrast to the results for the glioblastoma patient in Figure 1, the nosologic images in Figure 2 do not show tumor infiltration. Differentiation between Brain Metastasis and Glioblastoma using MRI and two-dimensional Turbo Spectroscopic Imaging data

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تاریخ انتشار 2008